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Reinforcement Learning with Neural Networks for Quantum Multiple Hypothesis Testing

机译:神经网络的强化学习用于量子多重假设测试

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Reinforcement learning with neural networks (RLNN) has recently demonstrated great promise for many problems, including some problems in quantum information theory. In this work, we apply reinforcement learning to quantum hypothesis testing, where one designs measurements that can distinguish between multiple quantum states $left. {left{ {{ho _j}} ight}} ight|_{j = 1}^m$ while minimizing the error probability. Although the Helstrom measurement is known to be optimal when there are m=2 states, the general problem of finding a minimal-error measurement is challenging. Additionally, in the case where the candidate states correspond to a quantum system with many qubit subsystems, implementing the optimal measurement on the entire system may be impractical. In this work, we develop locally-adaptive measurement strategies that are experimentally feasible in the sense that only one quantum subsystem is measured in each round. RLNN is used to find the optimal measurement protocol for arbitrary sets of tensor product quantum states. Numerical results for the network performance are shown. In special cases, the neural network testing-policy achieves the same probability of success as the optimal collective measurement.
机译:最近,通过神经网络(RLNN)进行强化学习已经证明了对许多问题的巨大希望,其中包括量子信息理论中的某些问题。在这项工作中,我们将强化学习应用于量子假设测试,其中一个设计可以区分多个量子状态的测量。 {\ left \ {{{\ rho _j}} \ right \}} \ right | _ {j = 1} ^ m $,同时最大程度地降低了错误概率。尽管已知在存在m = 2状态时Helstrom量度是最佳的,但是找到最小误差量度的一般问题却具有挑战性。另外,在候选状态对应于具有许多量子位子系统的量子系统的情况下,在整个系统上实施最佳测量可能是不切实际的。在这项工作中,我们开发了局部自适应的测量策略,在每轮仅测量一个量子子系统的意义上,该策略在实验上是可行的。 RLNN用于为张量积量子态的任意集合找到最佳的测量协议。显示了网络性能的数值结果。在特殊情况下,神经网络测试策略获得的成功几率与最佳集体测量值相同。

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